Dynamic calibration method for single and multiple vedio capture devices

ABSTRACT

The present invention discloses a dynamic calibration method for a single and multiple video capture devices. The present invention can acquire the variations of the pan angle and tilt angle of a single video capture device according to the displacement of the feature points between successive images. For a plurality of video capture devices, the present invention includes the epipolar-plane constraint between a plurality of video capture devices to achieve the goal of dynamical calibration. The calibration method in the present invention does not require specific calibration patterns or complicated correspondence of feature points, and can be applied to surveillance systems with wide-range coverage.

BACKGROUND OF THE INVENTION

1. Field of the Invention

The invention relates to a video surveillance system, and more particularly, to a dynamic calibration method for a single and multiple video capture devices.

2. Description of the Related Art

For a surveillance system with a plurality of pan-tilt-zoom (PTZ) cameras, cameras may pan, tilt, or zoom from time to time to acquire different views of the monitored scene. However, when a camera pans or tilts, its extrinsic parameters change accordingly. For this type of surveillance systems, how to accurately and efficiently recalibrate the extrinsic parameters of a plurality of PTZ cameras has become an important issue.

Up to now, various kinds of approaches have been developed to calibrate static camera's intrinsic and extrinsic parameters. For example, an off-line method has been proposed to find the relationship between the realized rotation angle and the requested angle so that they could control a PTZ camera to keep tracking moving objects in the monitored scene. (A. Jain, D. Kopell, K. Kakligian, and Y-F Wang, “Using stationary-dynamic camera assemblies for wide-area video surveillance and selective attention,” Proceedings of IEEE Conf. Computer Vision and Pattern Recognition, vol. 1, pp. 537-544, June 2006). Even though the error is corrected via the off-line training for each rotation request, yet it is still difficult to estimate the camera pose for each camera. Further, this method only demonstrated the dynamic calibration of a single PTZ camera, but not the calibration among a plurality of PTZ cameras. Another method utilized the marks and width of parallel lanes to calibrate PTZ cameras. (K.-T. Song and J.-C. Tai, “Dynamic calibration of pan-tilt-zoom cameras for traffic monitoring,” Proceedings of IEEE Transactions on Systems, Man and Cybernetics, Part B, vol. 36, Issue 5, pp. 1091-1103, October 2006). Although this method is practical for traffic monitoring, it is not generally enough for other types of surveillance systems.

Moreover, a dynamic camera calibration method with narrow-range coverage has been proposed. (C. T. Huang and O. R. Mitchell, “Dynamic camera calibration,” Proceedings of Proc. Int. Symposium on Computer Vision, pp. 169-174, November 1995). For a pair of cameras, this method performed the correspondence of feature points on the image pair and used coplanar geometry for camera calibration. Still another method utilized plane-based homography to determine the relative pose between a calibrating camera and a projector. (B. Zhang, “Self-recalibration of a structured light system via plane-based homography”, Proceedings of Pattern Recognition, vol. 40, Issue 4, pp. 1168-1377, April 2007). Nevertheless, this method requires a corresponding feature point and a structured light system to generate plane-based calibration patterns.

The aforementioned methods required corresponding feature points and/or special calibration patterns. However, to dynamically calibrate a plurality of PTZ cameras, calibration patterns and landmarks are not always applicable since they may get occluded or even move out of the captured scenes when cameras pan or tilt. On the other hand, if using the correspondence of feature points, we need to keep updating the correspondence of feature points when cameras rotate. For a wide-range surveillance system with many PTZ cameras, the correspondence of feature points cannot be easily solved.

Therefore, to solve the aforementioned problems, the present invention proposes a novel dynamic calibration method to improve the efficiency and feasibility for the calibration of video capture devices.

SUMMARY OF THE INVENTION

It is therefore one of the many objectives of the claimed invention to provide a dynamic calibration method for the video capture device. The present invention can acquire the variations of the pan angle and tilt angle of a single video capture device according to the displacement of feature points. For a plurality of video capture devices, the present invention additionally considers the epipolar-plane constraint among a plurality of video capture devices to achieve the goal of dynamical calibration. The calibration method in the present invention does not require specific calibration patterns or complicated correspondence of feature points, and can be applied to surveillance systems with wide-range coverage.

Another objective of the claimed invention is to provide a dynamic calibration method for the video capture device, which allows the presence of moving objects in the captured scenes while performing calibration. The calibration method in the present invention discards the feature points related to a moving object to increase the accuracy of calibration, and is very useful for applications related to active video surveillance.

A dynamic calibration method for the video capture device is disclosed. The calibration method comprises: providing at least one video capture device for capturing at least one initial image; panning or tilting the video capture device for capturing at least one successive image with different angles; extracting at least one initial feature point from the initial image, and extracting at least one feature point from said successive image, wherein the feature point is corresponding to the initial feature point; and acquiring the variations of a pan angle and a tilt angle of the video capture device according to the displacement between the initial feature point and the feature point. When the initial feature point or the feature point comes from a moving object, discard this initial feature point and the feature point.

Another dynamic calibration method for multiple video capture devices is disclosed. The calibration method comprises: providing a plurality of video capture devices; capturing at least one initial image for each video capture device, extracting at least one initial feature point from the initial image, and forming epipolar planes according to the projection centers of a video capture device pair and the initial feature points on the images of this pair of video capture devices; and panning or tilting the video capture device(s) for capturing at least one successive image with different angles, extracting at least one feature point from the successive image, wherein the feature point is corresponding to the initial feature point and located on the corresponding epipolar plane; and acquiring the variations of a pan angle and a tilt angle of each video capture device according to the epipolar-plane constraint and the displacement between the initial feature point and the feature point.

Below, the embodiments of the present invention are described in detail in cooperation with the attached drawings to make easily understood the objectives, technical contents, characteristics and accomplishments of the present invention.

BRIEF DESCRIPTION OF THE DRAWINGS

FIG. 1 is a flowchart illustrating a dynamic calibration method for a single video capture device according to an embodiment of the present invention;

FIG. 2 is a diagram schematically illustrating a calibration system for a video capture device according to an embodiment of the present invention;

FIG. 3 is a diagram schematically illustrating a basic modeling of a video capture device setup of the present invention;

FIG. 4 is a diagram schematically illustrating two successive images I_(t-1) and I_(t) captured by the video capture device of the present invention;

FIG. 5 is a diagram schematically illustrating the feature point extraction from the initial image I_(t-1) and the image I_(t) of the present invention;

FIG. 6 is a diagram schematically illustrating a pseudo plane according to an embodiment of the present invention;

FIG. 7 is a diagram schematically illustrating a moving object appears in the image according to an embodiment of the present invention;

FIG. 8 shows a flowchart describing a dynamic calibration method for a plurality of video capture devices according another exemplary embodiment of the present invention;

FIG. 9 is a diagram schematically illustrating a calibration system of a plurality of video capture devices according to another embodiment of the present invention;

FIG. 10 is a diagram schematically illustrating an epipolar plane formed by a pair of video capture devices; and

FIG. 11 is a diagram schematically illustrating the images captured by a video capture device pair at different timing, and the three corresponding epipolar lines.

DETAILED DESCRIPTION OF THE INVENTION

Please refer to FIG. 1. FIG. 1 is a flowchart illustrating a dynamic calibration method of a single video capture device according to an embodiment of the present invention. Provided that substantially the same result is achieved, the steps of the flowchart shown in FIG. 1 need not be in the exact order shown and need not be contiguous, that is, other steps can be intermediate. As shown in step S1, a video capture device is provided to capture the initial image, wherein the initial pose of the video capture device is defined. Then proceed to step S2. The video capture device pans or tilts in order to capture the successive images with different angles. In step S3, the video capture device can extract a plurality of initial feature points from the initial image based on KLT (Kanade-Lucas-Tomasi) algorithm, and extract the feature points corresponding to the initial feature points from the successive image. Please note that, the Kanade-Lucas-Tomasi algorithm is considered well known in the pertinent art and only an example of extracting feature points, and is not meant to be taken as limitations. That is, as will be easily observed by a personal of ordinary skill in the art, other embodiments of the present disclosure utilizing different algorithms are also possible. As shown in step S4, if the initial feature points in the initial image and the feature points in the successive image coming from moving objects, these feature points should be discarded in order to increase the accuracy of calibration. Lastly, proceed to step S5. The variations of a pan angle and a tilt angle of the video capture device can be acquired by the displacement between the initial feature points and the feature points.

The further detailed dynamic calibration method for a single video capture device is described as follows.

Please refer to FIG. 2. FIG. 2 is a diagram schematically illustrating a calibration system for a video capture device according to an embodiment of the present invention. As shown in FIG. 2, the calibration system in the present invention includes a video capture device 10 in an environment and a computer system 12 which connects to the video capture device 10. Please note that, the video capture device 10 can be a pan-tilt-zoom (PTZ) camera, or other video devices. In this embodiment, the video capture device 10 can be set on or near the ceiling. However, in other embodiments, the setup position can be assigned by different conditions depending on design requirements.

Please refer to FIG. 3. FIG. 3 is a diagram schematically illustrating a basic modeling of a video capture device according to the present invention. This model has been used in the video capture device of the present embodiment and the video capture devices in the following embodiments. Here, assume that the video capture device 10 is held above a horizontal plane H with a height h. The rotation center of the video capture device 10 is denoted as O_(R) and the projection center of the video capture device 10 denoted as O_(C), which is away from O_(R) with a distance r. For the video capture device 10, its “rectified” pose is defined to be the case when the optical axis of the video capture device is parallel to the horizon. It is said that when the video capture device 10 is rectified, its tilt angle is zero degrees. With respect to this rectified pose, a “rectified world coordinate system” is defined, where the projection center O_(c) is defined as the origin, the Z-axis is along the optical axis, and the X- and Y-axis are parallel to the x- and y-axis of the projected image plane, respectively. When the video capture device 10 has a tilt angle φ and a pan angle θ with respect to its rectified pose, the projection center moves to a new position O_(C)′. The back projection function B(p,θ,φ,h,Ω) could be deduced from the image coordinates p=(x,y) on a tilted and panned video capture device 10, under the constraint that the observed 3-D point is lying on a horizontal plane with Y=−h. The back projection function B(p,θ,φ,h,Ω) can be expressed as follows:

$\begin{matrix} \begin{matrix} {\begin{bmatrix} X \\ Y \\ Z \end{bmatrix} = \begin{bmatrix} \frac{{\beta \; x\; {C_{\theta}\left( {{r\; S_{\varphi}} - h} \right)}} + {\alpha \; y\; {S_{\theta}\left( {r - {h\; S_{\varphi}}} \right)}} - {{\alpha\beta}\; h\; C_{\varphi}S_{\theta}}}{\alpha \left( {{y\; C_{\varphi}} - {\beta \; S_{\varphi}}} \right)} \\ {- h} \\ \frac{{\beta \; x\; {S_{\theta}\left( {h\; - {r\; S_{\varphi}}} \right)}} + {\alpha \; y\; {C_{\theta}\left( {r - {h\; S_{\varphi}}} \right)}} - {{\alpha\beta}\; h\; C_{\varphi}C_{\theta}}}{\alpha \left( {{y\; C_{\varphi}} - {\beta \; S_{\varphi}}} \right)} \end{bmatrix}} \\ {\equiv {B\left( {p,\theta,\varphi,h,\Omega} \right)}} \end{matrix} & (1) \end{matrix}$

Here, C_(θ), S_(θ), C_(φ), and S_(φ) represent cos(θ), sin(θ), cos(φ), and sin(φ) respectively. Ω represents the set of intrinsic parameters of the video capture device.

At first, at time instant t−1, the video capture device 10 has a tilt angle φ_(t-1) and a pan angle θ_(t-1), with a height h. The video capture device 10 captures an initial image I_(t-1), as shown in FIG. 4. Then the video capture device 10 starts to pan or tilt at time instant t, and captures a successive image I_(t) with different pan and tilt angles, as shown in FIG. 4. Please refer to FIG. 5 as well as FIG. 4. the computer system 12 extracts a plurality of initial feature points from the books on the table in the initial image I_(t-1), and then extracts a plurality of feature points corresponding to the initial feature points from the books of the successive image I_(t). Here, the computer system 12 could use the KLT method to extract and track these feature points in the successive image, and all extracted feature points are corresponding to some unknown static points in the 3-D space.

Assume that the rotation radius r of the video capture device 10 is far smaller than the distances between these 3-D feature points and the video capture device 10. Also assume the variations of pan angle and tilt angle are very small during the capturing of two successive images. With these two assumptions, the projection center O_(C) can be thought to be fixed with respect to the 3-D feature points while the video capture device 10 is panning or tilting, as illustrated in FIG. 6. Moreover, assume there are three 3-D spatial points P_(A), P_(B) and P_(C) in the scene. Three projection lines are formed respectively by connecting the projection center O_(C) and P_(A), P_(B) and P_(C). These three lines intersect the image plane of the video capture device 10 on the initial feature points p_(A), p_(B) and p_(C), respectively. Along with the three projection lines, the initial feature points p_(A), p_(B) and p_(C) could be back projected onto a pseudo plane Π′, which forms three pseudo points {circumflex over (P)}_(A), {circumflex over (P)}_(B), and {circumflex over (P)}_(C). Wherein the coordinates of the pseudo plane Π′ is (0,0,{circumflex over (Z)}). In other words, the three 3-D points P_(A), P_(B) and P_(C) can be replaced by the three pseudo points {circumflex over (P)}_(A), {circumflex over (P)}_(B), and {circumflex over (P)}_(C) on their projection lines. There is no influence on the projected points in the image plane as long as the projection center of the device 10 is thought to be fixed. Additionally, if these 3-D points P_(A), P_(B) and P_(C) stay static during the capture of images, the corresponding feature points in image I_(t) can also be back-projected onto the same pseudo points {circumflex over (P)}_(A), {circumflex over (P)}_(B), and {circumflex over (P)}_(C) on the pseudo plane Π′. That is, if the video capture device 10 has the pan angle θ_(t-1) and the tilt angle φ_(t-1) while capturing the initial image I_(t-1), and has the pan angle θ_(t-1)+Δθ₁ and the tilt angle φ_(t-1)+Δφ while capturing the image I_(t), the computer system 12 can find the optimal Δθ_(t) and Δφ_(t) that minimize the following formula:

$\begin{matrix} {D = {\sum\limits_{k = 1}^{K}{{{\hat{B}\left( {{\hat{p}}_{k},{\theta_{t - 1} + {\Delta\theta}_{t}},{\varphi_{t - 1} + {\Delta\varphi}_{t}}} \right)} - {\hat{B}\left( {p_{k},\theta_{t - 1},\varphi_{t - 1}} \right)}}}^{2}}} & (2) \end{matrix}$

In the equation (2), {circumflex over (B)} represents the back projection function of an image feature point onto the pseudo plane Π′. p_(k) denotes an initial feature point in the initial image I_(t-1), and {circumflex over (p)}_(k) denotes the feature point in the successive image I_(t) corresponding to the initial feature point. K is the total number of image feature points for calibration. Please note that, the altitude parameter h can be ignored if the Z coordinate is fixed. The intrinsic parameter Ω can also be ignored since it is not changed when the video capture device 10 pans and tilts. Therefore, based on the equation (2), the computer system 12 can determine the variation of pan angle Δθ_(t) and the variation of tile angle Δφ_(t) according to the displacement between the initial feature points and the feature points, and then derive the pan angle θ_(t-1)+Δθ_(t) and the tilt angle φ_(t-1)+Δφ while capturing the image I_(t).

Moreover, the aforementioned method has assumed that all the feature points utilized for calibration correspond to some static 3-D points in the scene. However, in real applications, such as object tracking or positioning, some moving objects may be present. To guarantee accurate calibration, the feature points related to moving objects should be removed. As shown in FIG. 7, a moving object (e.g. a human being 14) exists in the initial image I_(t-1). Thus, the initial feature points corresponding to the human being 14 should be removed and discarded in order to assure the accuracy of calibration. The same, any feature points related to the moving object appearing in the image I_(t) should be removed as well.

The dynamic calibration operation of determining whether the initial feature points and the feature points come from moving objects is detailed as follows. Because the initial image and the successive image are captured with different angles, displacements exist between the initial feature points and the corresponding feature points. Therefore, in the present invention, the computer system 12 first makes the video capture device rotate under different angles in the static scene (i.e. the scene without any moving object) to calculate the displacements between all initial feature points and the corresponding feature points, and then derives the median from these displacements for each different rotation angle. Next, the computer system 12 calculates the standard deviation of the displacements based on each median, and plots the relationship between the standard deviations and the corresponding medians. In practice, the feature point displacements in the static scene have a similar statistical behavior. However, the statistical behavior for the feature point displacements which come from moving objects will be much different. Thus, when the displacement of a feature point is away from the median by three standard deviations, that feature point is treated as an undesired feature point and discarded.

Please refer to FIG. 8. FIG. 8 shows a flowchart describing a dynamic calibration method for a plurality of video capture devices according another exemplary embodiment of the present invention. Provided that substantially the same result is achieved, the steps of the flowchart shown in FIG. 8 need not be in the exact order shown and need not be contiguous, that is, other steps can be intermediate. As shown in step S1, a plurality of video capture devices are provided to capture the initial images, wherein the initial pose and related 3-D position of each video capture device are defined. Then proceed to step S2. The video capture devices start to pan or tilt to capture the successive images with different angles. In step S3, for the multiple video capture devices, the computer system 12 extracts a plurality of initial feature points from the initial images based on the KLT algorithm, and extracts the feature points corresponding to the initial feature points from the successive images. As shown in step S4, if the initial feature points in the initial images and the feature points in the successive images come from moving objects, these feature points should be discarded in order to increase the accuracy of calibration. Then proceed to step S5 and step S6. Every two video capture devices can form some epipolar planes based on their initial related positions. That is, for two video capture devices, their projection centers, together with one initial feature point in the initial image of any one capture device, determine an epipolar plane. The epipolar plane will be fixed as long as these two projection centers can be thought to be fixed, and the observed point remains static in the space. Hence, the feature point in the successive image will still lie on the corresponding epipolar plane. Then, for each video capture device, the computer system 12 can acquire the variations of pan angle and tilt angle according to the epipolar-plane constraint and the displacements between the initial feature points in the initial image and the feature points in the successive image, as shown in step S7.

The dynamic calibration operation of a plurality of video capture devices for determining whether the initial feature points and the feature points come from moving objects is detailed as follows. Because the initial image and the successive image are captured with different angles, displacements exist between the initial feature points and the corresponding feature points. Therefore, in the present invention, the computer system 12 first makes each video capture device rotate under different angles in the static scene (i.e. the scene without any moving object) to calculate the displacements between all initial feature points and the corresponding feature points, and then derives the median from these displacements for each different rotation angle. Next, the computer system 12 calculates the standard deviation of these displacements based on each median, and plots the relationship between the standard deviations and the corresponding medians. In practice, for each video capture device, the feature point displacements in the static scene have a similar statistical behavior. However, the statistical behavior for the feature point displacements which come from moving objects will be much different. Thus, when the displacement of a feature point is away from the median by three standard deviations, that feature point is treated as an undesired feature point and discarded.

Moreover, the extracted feature points on the same epipolar plane in the images captured from different video capture devices are not limited to exactly come from the same 3-D points. That is, the feature points on the corresponding epipolar lines in the images of a video capture device pair may not be point-wise matched. However, their back-projected points in the 3-D space must be “somewhere” on the corresponding epipolar planes.

The further dynamic calibration method for a plurality of video capture devices is detailed as follows.

Please refer to FIG. 9. FIG. 9 is a diagram schematically illustrating a calibration system for a plurality of video capture devices according to another embodiment of the present invention. As shown in FIG. 9, the calibration system for the video capture device in the present invention includes a plurality of video capture devices 10, 16, 18, and 20 in an environment. Please note that, the video capture devices 10, 16, 18, and 20 can be pan-tilt-zoom (PTZ) cameras, or other video devices. To further increase the accuracy of calibration, the 3-D spatial relationship among video capture devices should be taken into concern in addition to the aforementioned displacement information between feature points in the temporal domain. Here, the dynamic calibration in the present invention is achieved by adding the epipolar-plane constraint among a plurality of video capture devices.

In specific, the epipolar-plane constraint is composed of a pair of video capture devices and a feature point on the image of one video capture device. Here, take the video capture devices 10 and 16 for instance. As shown in FIG. 10, assume that the projection centers of the video capture devices 10 and 16 are O_(C1) and O_(C2), respectively. There is one point, namely P_(A), in the 3-D space. The projection centers O_(C1) and O_(C2), together with the 3-D point P_(A), determine an epipolar plane Π. This epipolar plane Π intersects the image plane 21 of the video capture device 10 to form the initial epipolar line l₁, and intersects the image plane 22 of the video capture device 16 to form the initial epipolar line l₂. If p_(A) ¹ and p_(A) ² are the projected points of the 3-D point P_(A) on the image planes 21 and 22, they must lie on l₁ and l₂, respectively. Hence, p_(A) ¹, p_(A) ², O_(C1), and O_(C2) are coplanar. Moreover, other points in the 3-D space are also projected onto the initial epipolar lines l₁ and l₂. For example, p_(B) ¹ and p_(C) ¹ are located on the initial epipolar line l₁, and p_(D) ¹ and p_(E) ¹ are located on the initial epipolar line l₂. The epipolar plane Π can be expressed as follows:

π(O _(C1) ,O _(C2) ,p _(A) ¹,θ¹,φ¹)≡{right arrow over (O _(C2) O _(C1))}×{right arrow over (O _(C1) B(p _(A) ¹,θ¹,φ¹))}  (3)

or π(O _(C1) ,O _(C2) ,p _(A) ²,θ²,φ²)≡{right arrow over (O _(C1) O _(C2))}×{right arrow over (O _(C2) B(p _(A) ²,θ²,φ²))}  (4)

Wherein B(p_(A) ¹,θ¹,φ¹) and B(p_(A) ²,θ²,φ²) are the functions defined in the equation (1).

In the exemplary embodiment of the present invention, at first, the video capture devices 10 and 16 have been calibrated at the time instant t−1. The pan and tilt angles of the video capture device 10 are θ¹ _(t-1) and φ¹ _(t-1), while the pan and tilt angles of the video capture device 16 are θ² _(t-1) and φ² _(t-1). The video capture device 10 captures the initial image I¹ _(t-1), while the video capture device 16 captures the initial image I² _(t-1). At the time instant t, the video capture device 10 rotates to a new pan angle θ¹ _(t-1)+Δθ¹ _(t) and a new tilt angle φ¹ _(t-1)+Δφ¹ _(t), while the video capture device 16 rotates to a new pan angle θ² _(t-1)+Δθ² _(t) and a new tilt angle φ² _(t-1)+Δφ² _(t). The video capture device 10 captures the successive image I¹ _(t), while the video capture device 16 captures the successive image I² _(t). Next, the computer system 12 extracts an initial feature point p_(A) ¹ from the initial image I¹ _(t-1), and extracts a corresponding feature point {circumflex over (p)}_(A) ¹ from the image I¹ _(t). That is, at the time instant t, the initial feature point p_(A) ¹ moves to the feature point {circumflex over (p)}_(A) ¹ in the image I¹ _(t). Similarly, the video capture device 16 extracts an initial feature point p_(A) ² from the initial image I² _(t-1), and extracts a corresponding feature point {circumflex over (P)}_(A) ² from the image I² _(t). That is, at the time instant t, the initial feature point p_(A) ² moves to the feature point {circumflex over (p)}_(A) ² in the image I² _(t).

Next, to address the issue in more detail, please refer to the calibration method for the video capture device 10 first. As mentioned above, at the time instant t−1, the initial feature points p_(A) ¹ and p_(A) ², and the projection centers O_(C1) and O_(C2) are located on the same epipolar plane Π, as shown in FIG. 10. At the time instant t, since the 3-D point P_(A) is static, the pan angle θ¹ _(t-1)+Δθ¹ _(t) and the tilt angle φ¹ _(t-1)+Δφ¹ _(t) of the video capture device 10 can be found such that the feature point {circumflex over (p)}_(A) ¹ in the image I¹ _(t) is still located on the same epipolar plane. That is, Δθ¹ _(t) and Δφ¹ _(t) can be found such that:

B({circumflex over (p)} _(A) ¹,θ_(t-1) ¹+Δθ_(t) ¹,φ_(t-1) ¹+Δφ_(t) ¹)·π(O _(C1) ,O _(C2) ,p _(A) ¹,θ_(t-1) ¹,φ_(t-1) ¹)=0  (5)

Similarly, for p_(B) ¹ and p_(C) ¹ which share the same epipolar line with p_(A) ¹, Δθ¹ _(t) and Δφ¹ _(t) can be found as follows:

B({circumflex over (p)} _(B) ¹,θ_(t-1) ¹+Δθ_(t) ¹,φ_(t-1) ¹+Δφ_(t) ¹)·π(O _(C1) ,O _(C2) ,p _(A) ¹,θ_(t-1) ¹,φ_(t-1) ¹)=0  (6)

B({circumflex over (p)} _(C) ¹,θ_(t-1) ¹+Δθ_(t) ¹,φ_(t-1) ¹+Δφ_(t) ¹)·π(O _(C1) ,O _(C2) ,p _(A) ¹,θ_(t-1) ¹,φ_(t-1) ¹)=0  (7)

In order to increase the accuracy of calibration, the dynamic calibration method in the present invention can extract a plurality of epipolar lines. Assume that m epipolar lines have been extracted from the initial image I¹ _(t-1). On the jth epipolar line, where j=1, 2, . . . , m, n_(j) feature points {p_(j,1) ¹, p_(j,2) ¹, . . . , p_(j,n) _(j) ¹} have been extracted on image I¹ _(t-1). These n_(j) feature points move to feature points {{circumflex over (p)}_(j,1) ¹, {circumflex over (p)}_(j,2) ¹, . . . , {circumflex over (p)}_(j,n) _(j) ¹} on image I¹ _(t). Based on the epipolar-plane constraint, the optimal Δθ_(t) ¹ and Δφ_(t) ¹ can be estimated by minimizing the following equation:

$\begin{matrix} {G_{t}^{1} = {\sum\limits_{j = 1}^{m}{\sum\limits_{i = 1}^{n_{j}}{{{B\left( {{\hat{p}}_{j,i}^{1},{\theta_{t - 1}^{1} + {\Delta\theta}_{t}^{1}},{\varphi_{t - 1}^{1} + {\Delta\varphi}_{t}^{1}}} \right)} \cdot {\pi \left( {O_{C\; 1},O_{C\; 2},p_{j}^{1},\theta_{t - 1}^{1},\varphi_{t - 1}^{1}} \right)}}}^{2}}}} & (8) \end{matrix}$

Furthermore, under the construction of a plurality of video capture devices, the variations of the pan angle and tilt angle of the video capture device 10 can be taken into account with the displacement of all feature points and the epipolar-plane constraint. That is, by integrating the equations (2) and (8), Δθ_(t) ¹ and Δφ_(t) ¹ can be estimated by minimizing the following equation:

$\begin{matrix} {F_{t}^{1} = {{\sum\limits_{j = 1}^{m}{\sum\limits_{i = 1}^{n_{j}}{{{\hat{B}\left( {{\hat{p}}_{j,i}^{1},{\theta_{t - 1}^{1} + {\Delta\theta}_{t}^{1}},{\varphi_{t - 1}^{1} + {\Delta\varphi}_{t - 1}^{1}}} \right)} - {\hat{B}\left( {p_{j,i}^{1},\theta_{t - 1}^{1},\varphi_{t - 1}^{1}} \right)}}}^{2}}} + {\lambda {\sum\limits_{j = 1}^{m}{\sum\limits_{i = 1}^{n_{j}}{{{B\left( {{\hat{p}}_{j,i}^{1},{\theta_{t - 1}^{1} + {\Delta\theta}_{t}^{1}},{\varphi_{t - 1}^{1} + {\Delta\varphi}_{t}^{1}}} \right)} \cdot {\pi \left( {O_{C\; 1},O_{C\; 2},p_{j}^{1},\theta_{t - 1}^{1},\varphi_{t - 1}^{1}} \right)}}}^{2}}}}}} & (9) \end{matrix}$

Since the video capture device 16 has the same calibration method and operation with the video capture device 10, detailed description is omitted for the sake of brevity. Similarly, the variations of pan angle Δθ_(t) ² and tilt angle Δφ_(t) ² of the video capture device 16 can be estimated by minimizing the following equation:

$\begin{matrix} {F_{t}^{2} = {{\sum\limits_{j = 1}^{m}{\sum\limits_{i = 1}^{n_{j}}{{{\hat{B}\left( {{\hat{p}}_{j,i}^{2},{\theta_{t - 1}^{2} + {\Delta\theta}_{t}^{2}},{\varphi_{t - 1}^{2} + {\Delta\varphi}_{t - 1}^{2}}} \right)} - {\hat{B}\left( {p_{j,i}^{2},\theta_{t - 1}^{2},\varphi_{t - 1}^{2}} \right)}}}^{2}}} + {\lambda {\sum\limits_{j = 1}^{m}{\sum\limits_{i = 1}^{n_{j}}{{{B\left( {{\hat{p}}_{j,i}^{2},{\theta_{t - 1}^{2} + {\Delta\theta}_{t}^{2}},{\varphi_{t - 1}^{2} + {\Delta\varphi}_{t}^{2}}} \right)} \cdot {\pi \left( {O_{C\; 1},O_{C\; 2},p_{j}^{2},\theta_{t - 1}^{2},\varphi_{t - 1}^{2}} \right)}}}^{2}}}}}} & (10) \end{matrix}$

Here, λ is a parameter to weight the contributions of the displacement of feature points and the epipolar plane constraint.

As shown in FIG. 11, the video capture devices 10 and 16 capture the initial image I^(t) _(t-1) and I² _(t-1) respectively at the time instant t−1. There are three initial epipolar lines A1, A2, and A3 in the image I¹ _(t-1). There are three initial epipolar lines B1, B2, and B3 corresponding to the initial epipolar lines A1, A2, and A3 in the image I² _(t-1). These initial epipolar lines A1, A2, A3, B1, B2, and B3 form three epipolar planes. Next, the video capture devices 10 and 16 capture the image I¹ _(t) and I² _(t) respectively at the time instant t. There are three epipolar lines A1′, A2′, and A3′, corresponding to the initial epipolar lines A1, A2, and A3, in the image I¹ _(t). There are three epipolar lines B1′, B2′, and B3′, corresponding to the initial epipolar lines B1, B2, and B3, in the image I² _(t). Therefore, the computer system 12 can calculate the variations of the pan angle and tilt angle of the video capture devices 10 and 16 according to the epipolar-plane constraint at the time instant t−1 and the displacement between the feature points. That is, at the time instant t, the new pan angle θ¹ _(t-1)+Δθ¹ _(t) and tilt angle φ¹ _(t-1)+Δφ¹ _(t) of the video capture device 10, and the new pan angle θ² _(t-1)+Δθ² _(t) and tilt angle φ² _(t-1)+Δφ² _(t) of the video capture device 16 can be derived based on the equations (9) and (10).

Furthermore, the extracted feature points on the same epipolar plane in the images captured from different video capture devices are not limited to exactly come from the same 3-D points. Moreover, the dynamic calibration method in the present invention utilizes the epipolar-plane constraint rather than the complicated point-wise correspondence of feature points in the related art. Therefore, the calibration method in the present invention allows different numbers of feature points located on the corresponding epipolar lines in the image pair captured by the devices 10 and 16. As shown in FIG. 11, there are three feature points on the initial corresponding epipolar lines, A1 in the image I¹ _(t-1) and B1 in the image I² _(t-1); however, there are only two feature points on the epipolar line A1′ in the image I¹ _(t). Nevertheless, the epipolar lines A1′ and B1′, together with the initial epipolar lines A1 and B1, are still located on the same epipolar plane.

Actually, in practice, as long as an initial feature point in the initial image is within the predefined distance from an initial epipolar line, that initial feature point is treated as on the initial epipolar line. Similarly, as long as a feature point in the successive image is within the predefined distance from the epipolar line, that feature point is treated as on the epipolar line. In this embodiment, the predefined distance is three pixels. However, the predefined distance is not limited to the above definition. That is, in other embodiments, the predefined distance can be assigned by different conditions depending on design requirements.

In contrast to the related dynamic calibration operation art, the calibration method of the present invention utilizes the epipolar-plane constraint and the displacement of feature points to calibrate the pan angle and tilt angle of each video capture device. That is, the dynamic calibration method of the present invention provides an easier and more efficient process to acquire the variations of the pan angle and tilt angle of the video capture device without any specific calibration pattern, indicator, or a complicated correspondence of feature points. The dynamic calibration method of the present invention can be applied to a wide-range surveillance system with a plurality of video capture devices. Moreover, the calibration method of the present invention also allows the presence of moving objects in the captured scenes while performing calibration. Hence, the dynamic calibration method of the present invention can be very useful for applications related to active video surveillance.

Those described above are only the preferred embodiments to exemplify the present invention but not to limit the scope of the present invention. Any equivalent modification or variation according to the shapes, structures, features and spirit disclosed in the specification is to be also included within the scope of the present invention. 

1. A dynamic calibration method for video capture device, comprising: providing at least one video capture device for capturing at least one initial image; panning or tilting said video capture device for capturing at least one successive image with different angles; extracting at least one initial feature point from said initial image, and extracting at least one feature point from said successive image, wherein said feature point is corresponding to said initial feature point; and acquiring variations of a pan angle and a tilt angle of said video capture device according to the displacement between said initial feature point and said feature point.
 2. The calibration method of claim 1, wherein when said initial feature point comes from a moving object, discard said initial feature point.
 3. The calibration method of claim 1, wherein when said feature point comes from a moving object, discard said feature point.
 4. The calibration method of claim 1, wherein the rotation radius of said video capture device is far smaller than the distance between said video capture device and the observed 3-D spatial point from which said initial feature point comes.
 5. The calibration method of claim 1, wherein the variations of said pan angle and said tilt angle of said video capture device are minute.
 6. The calibration method of claim 1, wherein the step of acquiring the variations of said pan angle and said tilt angle of said video capture device further comprises: back-projecting said initial feature point onto a pseudo plane to form a corresponding pseudo point; and searching a pose of said video capture device so as to back project said feature point to said pseudo point on said pseudo plane.
 7. The calibration method of claim 1, wherein said video capture device is a video camera.
 8. A dynamic calibration method for video capture device, comprising: providing a plurality of video capture devices; capturing at least one initial image for each said video capture device, extracting at least one initial feature point from said initial image, and forming an epipolar plane according to projection centers and said initial feature points of each pair of said video capture devices; panning or tilting said video capture device for capturing at least one successive image with different angles, extracting at least one feature point from said successive image, wherein said feature point is corresponding to said initial feature point and located on said corresponding epipolar plane; and acquiring variations of a pan angle and a tilt angle of said video capture device according to the epipolar-plane constraint.
 9. The calibration method of claim 8, further comprising: acquiring the variations of said pan angle and said tilt angle of said video capture device according to the displacement between said initial feature point and said feature point.
 10. The calibration method of claim 8, wherein when said initial feature point comes from a moving object, discard said initial feature point.
 11. The calibration method of claim 8, wherein when said feature point comes from a moving object, discard said feature point.
 12. The calibration method of claim 8, wherein said video capture device is a video camera.
 13. The calibration method of claim 8, wherein said initial feature point is located on an initial epipolar line, and when said initial feature point is within a predefined distance from said initial epipolar line, said initial feature point is treated as on said initial epipolar line.
 14. The calibration method of claim 8, wherein said feature point is located on an epipolar line, and when said feature point is within a predefined distance from said epipolar line, said feature point is treated as on said epipolar line. 